首页> 外文会议>9th International Conference on User Modeling 2003 UM 2003 Jun 22-26, 2003 Johnstown, PA, USA >A Multiagent Approach to Obtain Open and Flexible User Models in Adaptive Learning Communities
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A Multiagent Approach to Obtain Open and Flexible User Models in Adaptive Learning Communities

机译:在自适应学习社区中获取开放灵活的用户模型的多主体方法

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摘要

Nowadays, many user-modeling systems are applied to web-based adaptive systems. The large number of very different users using these systems make user model construction difficult. The solution is to use machine learning techniques that dynamically update the models by monitoring user behavior. However, the design of machine learning tasks for user modeling is static. This poses a problem in adaptive learning environments based on virtual communities. Each virtual community has its own administrators, and each administrator may prefer to include some more information on the user model. Another problem in the application of machine learning techniques for user model construction is the need to retrain the machine learning algorithms when new user interaction data become available. To face these problems, in this paper we present a multiagent adaptive module set in an adaptive learning collaborative environment. Our goal is two fold: (ⅰ) we want each administrator to be able to define new machine learning attributes in the user model (ⅱ) we want to provide a mechanism to dynamically retrain the algorithms.
机译:如今,许多用户建模系统已应用于基于Web的自适应系统。使用这些系统的大量非常不同的用户使用户模型的构建变得困难。解决方案是使用机器学习技术,该技术通过监视用户行为来动态更新模型。但是,用于用户建模的机器学习任务的设计是静态的。这在基于虚拟社区的自适应学习环境中提出了一个问题。每个虚拟社区都有其自己的管理员,每个管理员可能更喜欢在用户模型上包括一些更多信息。在机器学习技术用于用户模型构建的应用中的另一个问题是,当新的用户交互数据可用时,需要重新训练机器学习算法。为了解决这些问题,本文提出了一种在自适应学习协作环境中的多主体自适应模块集。我们的目标有两个:(ⅰ)我们希望每个管理员都能够在用户模型中定义新的机器学习属性(ⅱ)我们想提供一种动态地重新训练算法的机制。

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